Simon Buchwald, Gabriele Ciaramella, Julien Salomon
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引用次数: 0
摘要
SIAM 控制与优化期刊》第 62 卷第 3 期第 1343-1368 页,2024 年 6 月。 摘要本文致力于基于[Y. Maday and J. Salomon, Joint Proceedings of 48th IASCAB, 2008]中提出的策略开发贪婪重构算法并分析其收敛性。Maday and J. Salomon, Joint Proceedings of the 48th IEEE Conference on Decision and Control and the 28th Chinese Control Conference, 2009, pp.]这些程序允许设计一系列控制函数,从而简化非线性动力系统中未知算子的识别。贪婪重构算法的原始策略基于重构过程的离线/在线分解,以及通过先验选择的线性独立矩阵集获得的未知算子的解析。在之前的工作中 [S. Buchwald, G. C.Buchwald, G. Ciaramella, and J. Salomon, SIAM J. Control Optim., 59 (2021), pp.在此,我们将处理非线性系统的更一般情况。更确切地说,我们引入了一种基于线性化系统的新贪婪算法。我们证明,用这种新算法获得的控制结果,会导致应用于在线非线性识别问题的经典高斯-牛顿方法的局部收敛。然后,我们将这一结果扩展到对非线性系统的控制,也证明了局部收敛结果。主要收敛结果是针对具有线性和双线性控制结构的动力系统得出的。
Gauss–Newton Oriented Greedy Algorithms for the Reconstruction of Operators in Nonlinear Dynamics
SIAM Journal on Control and Optimization, Volume 62, Issue 3, Page 1343-1368, June 2024. Abstract. This paper is devoted to the development and convergence analysis of greedy reconstruction algorithms based on the strategy presented in [Y. Maday and J. Salomon, Joint Proceedings of the 48th IEEE Conference on Decision and Control and the 28th Chinese Control Conference, 2009, pp. 375–379]. These procedures allow the design of a sequence of control functions that ease the identification of unknown operators in nonlinear dynamical systems. The original strategy of greedy reconstruction algorithms is based on an offline/online decomposition of the reconstruction process and an ansatz for the unknown operator obtained by an a priori chosen set of linearly independent matrices. In the previous work [S. Buchwald, G. Ciaramella, and J. Salomon, SIAM J. Control Optim., 59 (2021), pp. 4511–4537], convergence results were obtained in the case of linear identification problems. We tackle here the more general case of nonlinear systems. More precisely, we introduce a new greedy algorithm based on the linearized system. We show that the controls obtained with this new algorithm lead to the local convergence of the classical Gauss–Newton method applied to the online nonlinear identification problem. We then extend this result to the controls obtained on nonlinear systems where a local convergence result is also proved. The main convergence results are obtained for dynamical systems with linear and bilinear control structures.
期刊介绍:
SIAM Journal on Control and Optimization (SICON) publishes original research articles on the mathematics and applications of control theory and certain parts of optimization theory. Papers considered for publication must be significant at both the mathematical level and the level of applications or potential applications. Papers containing mostly routine mathematics or those with no discernible connection to control and systems theory or optimization will not be considered for publication. From time to time, the journal will also publish authoritative surveys of important subject areas in control theory and optimization whose level of maturity permits a clear and unified exposition.
The broad areas mentioned above are intended to encompass a wide range of mathematical techniques and scientific, engineering, economic, and industrial applications. These include stochastic and deterministic methods in control, estimation, and identification of systems; modeling and realization of complex control systems; the numerical analysis and related computational methodology of control processes and allied issues; and the development of mathematical theories and techniques that give new insights into old problems or provide the basis for further progress in control theory and optimization. Within the field of optimization, the journal focuses on the parts that are relevant to dynamic and control systems. Contributions to numerical methodology are also welcome in accordance with these aims, especially as related to large-scale problems and decomposition as well as to fundamental questions of convergence and approximation.